会议专题

Optimization Algorithm of Hobbing Cutting Parameters Based on Particle Swarm Optimization SVR

  Hobbing cutting technology is of great significance for improving production efficiency and developing cleaner production.However,the choice of optimal hobbing parameters is the key to improving hobbing machining efficiency.To solve this problem,this paper proposes an optimization algorithm of hobbing cutting parameters based on particle swarm optimization support vector regression(SVR).Firstly,based on the objective function of hobbing optimization in the actual machining process,a multi-objective optimization function is set up with the feed rate and cutting speed as variables and the maximum productivity and minimum production cost as the optimization goals.Then,hobbing cutting parameters are optimized by combining particle swarm optimization and support vector regression.The actual machining tests show that the hobbing cutting parameters after optimization are longer than those before optimization.The experimental results verify the effectiveness of the parameter optimization algorithm.

Hobbing cutting parameters particle swarm optimization support vector regression parameter optimization

Wu Xiaoqiang Zhang Chunyou

College of Mechanical Engineering,Inner Mongolia University for the Nationalities,Inner Mongolla Tongliao 028043,China

国际会议

2018 International Conference on Computational Science and Engineering (ICCSE 2018))(2018年国际计算科学与工程会议)

青岛

英文

12-17

2018-11-03(万方平台首次上网日期,不代表论文的发表时间)